Data Augmentation of Wearable Sensor Data for Parkinson's Disease Monitoring using Convolutional Neural Networks
About
While convolutional neural networks (CNNs) have been successfully applied to many challenging classification applications, they typically require large datasets for training. When the availability of labeled data is limited, data augmentation is a critical preprocessing step for CNNs. However, data augmentation for wearable sensor data has not been deeply investigated yet. In this paper, various data augmentation methods for wearable sensor data are proposed. The proposed methods and CNNs are applied to the classification of the motor state of Parkinson's Disease patients, which is challenging due to small dataset size, noisy labels, and large intra-class variability. Appropriate augmentation improves the classification performance from 77.54\% to 86.88\%.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Time Series Forecasting | ETTm1 (test) | -- | 278 | |
| Time Series Forecasting | Weather (test) | -- | 200 | |
| Time Series Forecasting | ETTm2 (test) | -- | 171 | |
| Myoelectric Gesture Recognition | Ninapro DB4 | Accuracy66.01 | 65 | |
| Myoelectric Gesture Recognition | Ninapro DB2 | Accuracy74.36 | 60 | |
| Gesture Recognition | GrabMyo (cross-subject) | Accuracy50.07 | 45 | |
| Gesture Recognition | Ninapro DB2 | Accuracy70.63 | 26 | |
| Gesture Recognition | Ninapro DB7 | Accuracy74.24 | 26 | |
| Hand gesture classification | Ninapro DB4 | Accuracy65.43 | 26 | |
| Time-series classification | UCR 30 | Mean Accuracy (UCR 30)79.6 | 21 |